首页> 外文期刊>中国文献情报:英文版 >Stability-mutation feature identification of Web search keywords based on keyword concentration change ratio
【24h】

Stability-mutation feature identification of Web search keywords based on keyword concentration change ratio

机译:基于关键词集中度变化比的Web搜索关键词稳定性变异特征识别

获取原文
获取原文并翻译 | 示例
       

摘要

Purpose: The aim of this paper is to discuss how the keyword concentration change ratio(KCCR) is used while identifying the stability-mutation feature of Web search keywords during information analyses and predictions.Design/methodology/approach: By introducing the stability-mutation feature of keywords and its significance, the paper describes the function of the KCCR in identifying keyword stability-mutation features. By using Ginsberg’s influenza keywords, the paper shows how the KCCR can be used to identify the keyword stability-mutation feature effectively.Findings: Keyword concentration ratio has close positive correlation with the change rate of research objects retrieved by users, so from the characteristic of the "stability-mutation" of keywords, we can understand the relationship between these keywords and certain information. In general, keywords representing for mutation fit for the objects changing in short-term, while those representing for stability are suitable for long-term changing objects. Research limitations: It is difficult to acquire the frequency of keywords, so indexes or parameters which are closely related to the true search volume are chosen for this study.Practical implications: The stability-mutation feature identification of Web search keywords can be applied to predict and analyze the information of unknown public events through observing trends of keyword concentration ratio.Originality/value: The stability-mutation feature of Web search could be quantitatively described by the keyword concentration change ratio(KCCR). Through KCCR, the authors took advantage of Ginsberg’s influenza epidemic data accordingly and demonstrated how accurate and effective the method proposed in this paper was while it was used in information analyses and predictions.
机译:目的:本文的目的是讨论在信息分析和预测期间识别Web搜索关键字的稳定性突变特征时如何使用关键字浓度变化率(KCCR)。设计/方法/方法:通过介绍稳定性突变关键字的特征及其意义,本文介绍了KCCR在识别关键字稳定性突变特征中的功能。通过使用金斯伯格的流感关键词,本文展示了如何使用KCCR来有效地识别关键词稳定性突变特征。关键字的“稳定性突变”,我们可以了解这些关键字与某些信息之间的关系。通常,代表突变的关键字适合短期更改的对象,而代表稳定性的关键字则适合长期更改的对象。研究局限性:难以获得关键词的频率,因此选择与真实搜索量密切相关的索引或参数。实际意义:Web搜索关键词的稳定性突变特征识别可用于预测原创性/价值:可以通过关键词集中度变化率(KCCR)来定量描述网络搜索的稳定性突变特征。通过KCCR,作者相应地利用了Ginsberg的流感流行数据,并证明了本文提出的方法在信息分析和预测中的准确性和有效性。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号